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Overview
Duration is 1 min
In this lab, you will perform advanced feature engineering by executing feature cross using BigQuery's ML.FEATURE_CROSS, deriving coordinate features and feature crossing coordinate features.
Additionally, you will apply the BUCKETIZE function, apply the TRANSFORM clause, apply L2 Regularization and evaluate model performance throughout the process.
What you learn
In this lab, you will:
Create a Workbench Instance Notebook.
Create SQL statements to evaluate the model
Extract temporal features
Perform a feature cross on temporal features
Apply ML.FEATURE_CROSS to categorical features
Create a Euclidan feature column
Feature cross coordinate features
Apply the BUCKETIZE function
Apply the TRANSFORM clause and L2 Regularization
Evaluate the model using ML.PREDICT
Vertex AI offers two Notebook Solutions, Workbench and Colab Enterprise.
Workbench
Vertex AI Workbench is a good option for projects that prioritize control and customizability. It’s great for complex projects spanning multiple files, with complex dependencies. It’s also a good choice for a data scientist who is transitioning to the cloud from a workstation or laptop.
Vertex AI Workbench Instances comes with a preinstalled suite of deep learning packages, including support for the TensorFlow and PyTorch frameworks.
Setup
For each lab, you get a new Google Cloud project and set of resources for a fixed time at no cost.
Sign in to Google Skills using an incognito window.
Note the lab's access time (for example, 1:15:00), and make sure you can finish within that time.
There is no pause feature. You can restart if needed, but you have to start at the beginning.
When ready, click Start lab.
Note your lab credentials (Username and Password). You will use them to sign in to the Google Cloud Console.
Click Open Google Console.
Click Use another account and copy/paste credentials for this lab into the prompts.
If you use other credentials, you'll receive errors or incur charges.
Accept the terms and skip the recovery resource page.
Task 1. Enable APIs
On the Navigation menu (), click APIs & services.
Scroll down and confirm that your APIs are enabled.
If an API is missing, click ENABLE APIS AND SERVICES at the top, search for the API by name, and enable it for your project.
Confirm that you have cloned the repository. Double-click on the training-data-analyst directory and ensure that you can see its contents.
Click Check my progress to verify the objective.
Clone a course repo within your JupyterLab interface
Task 4. Perform advanced Feature Engineering in BigQuery ML
Duration is 60 min
In the notebook interface, navigate to training-data-analyst > courses > machine_learning > deepdive2 > feature_engineering > labs and opening 2_bqml_adv_feat_eng-lab.ipynb.
A pop-up will appear for you to select a kernel. Choose the TensorFlow 2.11 (Local) kernel from the options.
In the notebook interface, click on Edit > Clear All Outputs (click on Edit, then in the drop-down menu, select Clear All Outputs).
Carefully read through the notebook instructions and fill in lines marked with #TODO where you need to complete the code.
Click Check my progress to verify the objective.
Perform advanced Feature Engineering in BigQuery ML
End your lab
When you have completed your lab, click End Lab. Google Skills removes the resources you’ve used and cleans the account for you.
You will be given an opportunity to rate the lab experience. Select the applicable number of stars, type a comment, and then click Submit.
The number of stars indicates the following:
1 star = Very dissatisfied
2 stars = Dissatisfied
3 stars = Neutral
4 stars = Satisfied
5 stars = Very satisfied
You can close the dialog box if you don't want to provide feedback.
For feedback, suggestions, or corrections, please use the Support tab.
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Lab membuat project dan resource Google Cloud untuk jangka waktu tertentu
Lab memiliki batas waktu dan tidak memiliki fitur jeda. Jika lab diakhiri, Anda harus memulainya lagi dari awal.
Di kiri atas layar, klik Start lab untuk memulai
Gunakan penjelajahan rahasia
Salin Nama Pengguna dan Sandi yang diberikan untuk lab tersebut
Klik Open console dalam mode pribadi
Login ke Konsol
Login menggunakan kredensial lab Anda. Menggunakan kredensial lain mungkin menyebabkan error atau dikenai biaya.
Setujui persyaratan, dan lewati halaman resource pemulihan
Jangan klik End lab kecuali jika Anda sudah menyelesaikan lab atau ingin mengulanginya, karena tindakan ini akan menghapus pekerjaan Anda dan menghapus project
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Satu lab dalam satu waktu
Konfirmasi untuk mengakhiri semua lab yang ada dan memulai lab ini
Gunakan penjelajahan rahasia untuk menjalankan lab
Menggunakan jendela Samaran atau browser pribadi adalah cara terbaik untuk menjalankan lab ini. Langkah ini akan mencegah konflik antara akun pribadi Anda dan akun Siswa, yang dapat menyebabkan tagihan ekstra pada akun pribadi Anda.
In this lab, you will perform feature crosses and other advanced steps to improve the model performance.